Evaluation of the MODIS LAI product using independent lidar-derived LAI: A case study in mixed conifer forest |
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Authors: | Jennifer L.R. Jensen Karen S. Humes |
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Affiliation: | a Department of Geography, Texas Center for Geographic Information Science, 601 University Drive, Texas State University, San Marcos, San Marcos, TX 78666, United Statesb Department of Geography, McClure Hall 203, P.O. Box 443021, University of Idaho, Moscow, ID 83844, United Statesc Rocky Mountain Research Station, US Department of Agriculture Forest Service, 1221 South Main Street, Moscow, ID 83843, United Statesd Department of Rangeland Ecology and Management, Geospatial Laboratory for Environmental Dynamics, College of Natural Resources, Room 205E, University of Idaho, Moscow, ID 83844, United Statese Department of Geography and Earth Sciences and Center for Applied Geographic Information Science, University of North Carolina at Charlotte, Charlotte, NC 28223, United States |
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Abstract: | This study presents an alternative assessment of the MODIS LAI product for a 58,000 ha evergreen needleleaf forest located in the western Rocky Mountain range in northern Idaho by using lidar data to model (R2 = 0.86, RMSE = 0.76) and map LAI at higher resolution across a large number of MODIS pixels in their entirety. Moderate resolution (30 m) lidar-based LAI estimates were aggregated to the resolution of the 1-km MODIS LAI product and compared to temporally-coincident MODIS retrievals. Differences in the MODIS and lidar-derived values of LAI were grouped and analyzed by several different factors, including MODIS retrieval algorithm, sun/sensor geometry, and sub-pixel heterogeneity in both vegetation and terrain characteristics. Of particular interest is the disparity in the results when MODIS LAI was analyzed according to algorithm retrieval class. We observed relatively good agreement between lidar-derived and MODIS LAI values for pixels retrieved with the main RT algorithm without saturation for LAI LAI ≤ 4. Moreover, for the entire range of LAI values, considerable overestimation of LAI (relative to lidar-derived LAI) occurred when either the main RT with saturation or back-up algorithm retrievals were used to populate the composite product regardless of sub-pixel vegetation structural complexity or sun/sensor geometry. These results are significant because algorithm retrievals based on the main radiative transfer algorithm with or without saturation are characterized as suitable for validation and subsequent ecosystem modeling, yet the magnitude of difference appears to be specific to retrieval quality class and vegetation structural characteristics. |
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Keywords: | Leaf area index LAI Lidar MODIS Sub-pixel Vegetation structure Conifer Evergreen needleleaf |
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